Core Building Blocks: Next Gen Geo Spatial GPT Application
- URL: http://arxiv.org/abs/2310.11029v2
- Date: Wed, 18 Oct 2023 10:15:40 GMT
- Title: Core Building Blocks: Next Gen Geo Spatial GPT Application
- Authors: Ashley Fernandez, Swaraj Dube
- Abstract summary: This paper introduces MapGPT, which aims to bridge the gap between natural language understanding and spatial data analysis.
MapGPT enables more accurate and contextually aware responses to location-based queries.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper proposes MapGPT which is a novel approach that integrates the
capabilities of language models, specifically large language models (LLMs),
with spatial data processing techniques. This paper introduces MapGPT, which
aims to bridge the gap between natural language understanding and spatial data
analysis by highlighting the relevant core building blocks. By combining the
strengths of LLMs and geospatial analysis, MapGPT enables more accurate and
contextually aware responses to location-based queries. The proposed
methodology highlights building LLMs on spatial and textual data, utilizing
tokenization and vector representations specific to spatial information. The
paper also explores the challenges associated with generating spatial vector
representations. Furthermore, the study discusses the potential of
computational capabilities within MapGPT, allowing users to perform geospatial
computations and obtain visualized outputs. Overall, this research paper
presents the building blocks and methodology of MapGPT, highlighting its
potential to enhance spatial data understanding and generation in natural
language processing applications.
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